Self Supervised Lesion Recognition for Breast Ultrasound Diagnosis

Yuanfan Guo, Canqian Yang, Tiancheng Lin, Chunxiao Li, Rui Zhang, Yi Xu
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引用次数: 2

Abstract

Previous deep learning based Computer Aided Diagnosis (CAD) system treats multiple views of the same lesion as independent images. Since an ultrasound image only describes a partial 2D projection of a 3D lesion, such paradigm ignores the semantic relationship between different views of a lesion, which is inconsistent with the traditional diagnosis where sonographers analyze a lesion from at least two views. In this paper, we propose a multi-task framework that complements Benign/Malignant classification task with lesion recognition (LR) which helps leveraging relationship among multiple views of a single lesion to learn a complete representation of the lesion. To be specific, LR task employs contrastive learning to encourage representation that pulls multiple views of the same lesion and repels those of different lesions. The task therefore facilitates a representation that is not only invariant to the view change of the lesion, but also capturing fine-grained features to distinguish between different lesions. Experiments show that the proposed multi-task framework boosts the performance of Benign/Malignant classification as two sub-tasks complement each other and enhance the learned representation of ultrasound images.
乳腺超声诊断的自我监督病灶识别
以往基于深度学习的计算机辅助诊断(CAD)系统将同一病变的多个视图视为独立的图像。由于超声图像仅描述了3D病变的部分2D投影,因此这种范式忽略了病变不同视图之间的语义关系,这与超声医师从至少两个视图分析病变的传统诊断不一致。在本文中,我们提出了一个多任务框架,该框架将良性/恶性分类任务与病变识别(LR)相补充,有助于利用单个病变的多个视图之间的关系来学习病变的完整表示。具体地说,LR任务采用对比学习来鼓励再现,这种再现可以吸引对同一病变的多个视图,并排斥对不同病变的视图。因此,该任务促进了一种表示,该表示不仅对病变的视图变化不变,而且还捕获细粒度特征以区分不同的病变。实验表明,所提出的多任务框架由于两个子任务的互补而提高了良性/恶性分类的性能,并增强了超声图像的学习表征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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